Hardware Implementation of k-Winner-Take-All Neural Network with On-chip Learning

Hui-Ya Li, C. Ou, Yi-Tsan Hung, Wen-Jyi Hwang, Chia-Lung Hung
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引用次数: 5

Abstract

This paper presents a novel pipelined architecture of the competitive learning (CL) algorithm with k-winners-take-all activation. The architecture employs a codeword swapping scheme so that neurons failing the competition for a training vector are immediately available for the competitions for the subsequent training vectors. An efficient pipeline architecture is then designed based on the codeword swapping scheme for enhancing the throughput. The CPU time of the NIOS processor executing the CL training with the proposed architecture as an accelerator is measured. Experiment results show that the CPU time is lower than that of other hardware or software implementations running the CL training program with or without the support of custom hardware.
基于片上学习的k-赢者通吃神经网络硬件实现
提出了一种具有k-赢者通吃激活的竞争学习(CL)算法的流水线结构。该架构采用码字交换方案,使得在训练向量竞争中失败的神经元可以立即用于后续训练向量的竞争。在此基础上,设计了一种基于码字交换方案的高效管道结构,以提高吞吐量。测量了NIOS处理器使用所建议的体系结构作为加速器执行CL训练的CPU时间。实验结果表明,在有或没有定制硬件支持的情况下,运行CL训练程序的CPU时间比其他硬件或软件实现的CPU时间要低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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